Monash University
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Low-dimensional decomposition, smoothing and forecasting of sparse functional data

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journal contribution
posted on 2022-11-09, 00:30 authored by Alexander Dokumentov, Rob J Hyndman
We propose a new generic method ROPES (Regularized Optimization for Prediction and Estimation with Sparse data) for decomposing, smoothing and forecasting two-dimensional sparse data. In some ways, ROPES is similar to Ridge Regression, the LASSO, Principal Component Analysis (PCA) and Maximum-Margin Matrix Factorisation (MMMF). Using this new approach, we propose a practical method of forecasting mortality rates, as well as a new method for interpolating and extrapolating sparse longitudinal data. We also show how to calculate prediction intervals for the resulting estimates.

History

Classification-JEL

C10, C14, C33

Creation date

2014-05-01

Working Paper Series Number

16/14

Length

33

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2014-16